Walk This Way: Improving Pedestrian Agent-Based Models through Scene Activity Analysis

Authored by Sarah Wise, Andrew T Crooks, Arie Croitoru, Xu Lu, John M Irvine, Anthony Stefanidis

Date Published: 2015

DOI: 10.3390/ijgi4031627

Sponsors: National Geospatial-Intelligence Agency

Platforms: MASON

Model Documentation: ODD

Model Code URLs: https://www.comses.net/codebases/4706/releases/1.0.0/

Abstract

Pedestrian movement is woven into the fabric of urban regions. With more people living in cities than ever before, there is an increased need to understand and model how pedestrians utilize and move through space for a variety of applications, ranging from urban planning and architecture to security. Pedestrian modeling has been traditionally faced with the challenge of collecting data to calibrate and validate such models of pedestrian movement. With the increased availability of mobility datasets from video surveillance and enhanced geolocation capabilities in consumer mobile devices we are now presented with the opportunity to change the way we build pedestrian models. Within this paper we explore the potential that such information offers for the improvement of agent-based pedestrian models. We introduce a Scene-and Activity-Aware Agent-Based Model (SA(2)-ABM), a method for harvesting scene activity information in the form of spatiotemporal trajectories, and incorporate this information into our models. In order to assess and evaluate the improvement offered by such information, we carry out a range of experiments using real-world datasets. We demonstrate that the use of real scene information allows us to better inform our model and enhance its predictive capabilities.
Tags
Simulation behavior environment patterns natural movement mobility Sensor networks Object tracking Navigation Geography